AI

Liquid AI, a new MIT spinoff, wants to build an entirely new type of AI

Comment

Brain model with neuron, synapse, receptor and verbs. on dark backgrounds.
Image Credits: dem10 / Getty Images

An MIT spinoff co-founded by robotics luminary Daniela Rus aims to build general-purpose AI systems powered by a relatively new type of AI model called a liquid neural network.

The spinoff, aptly named Liquid AI, emerged from stealth this morning and announced that it has raised $37.5 million — substantial for a two-stage seed round — from VCs and organizations including OSS Capital, PagsGroup, WordPress parent company Automattic, Samsung Next, Bold Capital Partners and ISAI Cap Venture, as well as angel investors like GitHub co-founder Tom Preston Werner, Shopify co-founder Tobias Lütke and Red Hat co-founder Bob Young.

The tranche values Liquid AI at $303 million post-money.

Joining Rus on the founding Liquid AI team are Ramin Hasani (CEO), Mathias Lechner (CTO) and Alexander Amini (chief scientific officer). Hasani was previously the principal AI scientist at Vanguard before joining MIT as a postdoctoral associate and research associate, while Lechner and Amini are longtime MIT researchers, having contributed — along with Hasani and Rus — to the invention of liquid neural networks.

What are liquid neural networks, you might be wondering? My colleague Brian Heater has written about them extensively, and I strongly encourage you to read his recent interview with Rus on the topic. But I’ll do my best to cover the salient points.

A research paper titled “Liquid Time-constant Networks,” published at the tail end of 2020 by Hasani, Rus, Lechner, Amini and others, put liquid neural networks on the map following several years of fits and starts; liquid neural networks as a concept have been around since 2018.

Liquid neural networks
Image Credits: MIT CSAIL

“The idea was invented originally at the Vienna University of Technology, Austria at professor Radu Grosu’s lab, where I completed my Ph.D. and Mathias Lechner his master’s degree,” Hasani told TechCrunch in an email interview. “The work then got refined and scaled at Rus’ lab at MIT CSAIL, where Amini and Rus joined Mathias and I.”

Liquid neural networks consist of “neurons” governed by equations that predict each individual neuron’s behavior over time, like most other modern model architectures. The “liquid” bit in the term “liquid neural networks” refers to the architecture’s flexibility; inspired by the “brains” of roundworms, not only are liquid neural networks much smaller than traditional AI models, but they require far less compute power to run.

It’s helpful, I think, to compare a liquid neural network to a typical generative AI model.

GPT-3, the predecessor to OpenAI’s text-generating, image-analyzing model GPT-4, contains about 175 billion parameters and ~50,000 neurons — “parameters” being the parts of the model learned from training data that essentially define the skill of the model on a problem (in GPT-3’s case generating text). By contrast, a liquid neural network trained for a task like navigating a drone through an outdoor environment can contain as few as 20,000 parameters and fewer than 20 neurons.

Generally speaking, fewer parameters and neurons translates to less compute needed to train and run the model, an attractive prospect at a time when AI compute capacity is at a premium. A liquid neural network designed to drive a car autonomously could in theory run on a Raspberry Pi, to give a concrete example.

Liquid neural networks’ small size and straightforward architecture afford the added advantage of interpretability. It makes intuitive sense — figuring out the function of every neuron inside a liquid neural network is a more manageable task than figuring out the function of the 50,000-or-so neurons in GPT-3 (although there have been reasonably successful efforts to do this).

Now, few-parameter models capable of autonomous driving, text generation and more already exist. But low overhead isn’t the only thing that liquid neural networks have going for them.

Liquid neural networks’ other appealing — and arguably more unique — feature is their ability to adapt their parameters for “success” over time. The networks consider sequences of data as opposed to the isolated slices or snapshots most models process and adjust the exchange of signals between their neurons dynamically. These qualities let liquid neural networks deal with shifts in their surroundings and circumstances even if they weren’t trained to anticipate these shifts, such as changing weather conditions in the context of self-driving.

In tests, liquid neural networks have edged out other state-of-the-art algorithms in predicting future values in datasets spanning atmospheric chemistry to car traffic. But more impressive — at least to this writer — is what they’ve achieved in autonomous navigation.

Earlier this year, Rus and the rest of Liquid AI’s team trained a liquid neural network on data collected by a professional human drone pilot. They then deployed the algorithm on a fleet of quadrotors, which underwent long-distance, target-tracking and other tests in a range of outdoor environments, including a forest and dense city neighborhood.

According to the team, the liquid neural network beat other models trained for navigation — managing to make decisions that led the drones to targets in previously unexplored spaces even in the presence of noise and other challenges. Moreover, the liquid neural network was the only model that could reliably generalize to scenarios it hadn’t seen without any fine-tuning.

Drone search and rescue, wildlife monitoring and delivery are among the more obvious applications of liquid neural networks. But Rus and the rest of the Liquid AI team assert that the architecture is suited to analyzing any phenomena that fluctuate over time, including electric power grids, medical readouts, financial transactions and severe weather patterns. As long as there’s a dataset with sequential data, like video, liquid neural networks can train on it.

So what exactly does Liquid AI the startup hope to achieve with this powerful new(ish) architecture? Plain and simple, commercialization.

“[We compete] with foundation model companies building GPTs,” Hasani said — not naming names but not-so-subtly gesturing toward OpenAI and its many rivals (e.g. Anthropic, Stability AI, Cohere, AI21 Labs, etc.) in the generative AI space. “[The seed funding] will allow us to build the best-in-class new Liquid foundation models beyond GPTs.”

One presumes work will continue on the liquid neural network architecture, as well. Just in 2022, Rus’ lab devised a way to scale liquid neural networks far beyond what was once computationally practical; other breakthroughs could be lurking on the horizon with any luck.

Beyond designing and training new models, Liquid AI plans to provide on-premises and private AI infrastructure for customers and a platform that’ll enable these customers to build their own models for whatever use cases they conjure up — subject to Liquid AI’s terms, of course.

“Accountability and safety of large AI models is of paramount importance,” Hasani added. “Liquid AI offers more capital efficient, reliable, explainable and capable machine learning models for both domain-specific and generative AI applications.”

Liquid AI, which has a presence in Palo Alto in addition to Boston, has a 12-person team. Hasani expects that number to grow to 20 by early next year.

More TechCrunch

The deck included some redacted numbers, but there was still enough data to get a good picture.

Pitch Deck Teardown: Cloudsmith’s $15M Series A deck

The company is describing the event as “a chance to demo some ChatGPT and GPT-4 updates.”

OpenAI’s ChatGPT announcement: What we know so far

Unlike ChatGPT, Claude did not become a new App Store hit.

Anthropic’s Claude sees tepid reception on iOS compared with ChatGPT’s debut

Welcome to Startups Weekly — Haje‘s weekly recap of everything you can’t miss from the world of startups. Sign up here to get it in your inbox every Friday. Look,…

Startups Weekly: Trouble in EV land and Peloton is circling the drain

Scarcely five months after its founding, hard tech startup Layup Parts has landed a $9 million round of financing led by Founders Fund to transform composites manufacturing. Lux Capital and Haystack…

Founders Fund leads financing of composites startup Layup Parts

AI startup Anthropic is changing its policies to allow minors to use its generative AI systems — in certain circumstances, at least.  Announced in a post on the company’s official…

Anthropic now lets kids use its AI tech — within limits

Zeekr’s market hype is noteworthy and may indicate that investors see value in the high-quality, low-price offerings of Chinese automakers.

The buzziest EV IPO of the year is a Chinese automaker

Venture capital has been hit hard by souring macroeconomic conditions over the past few years and it’s not yet clear how the market downturn affected VC fund performance. But recent…

VC fund performance is down sharply — but it may have already hit its lowest point

The person who claims to have 49 million Dell customer records told TechCrunch that he brute-forced an online company portal and scraped customer data, including physical addresses, directly from Dell’s…

Threat actor says he scraped 49M Dell customer addresses before the company found out

The social network has announced an updated version of its app that lets you offer feedback about its algorithmic feed so you can better customize it.

Bluesky now lets you personalize main Discover feed using new controls

Microsoft will launch its own mobile game store in July, the company announced at the Bloomberg Technology Summit on Thursday. Xbox president Sarah Bond shared that the company plans to…

Microsoft is launching its mobile game store in July

Smart ring maker Oura is launching two new features focused on heart health, the company announced on Friday. The first claims to help users get an idea of their cardiovascular…

Oura launches two new heart health features

Keeping up with an industry as fast-moving as AI is a tall order. So until an AI can do it for you, here’s a handy roundup of recent stories in the world…

This Week in AI: OpenAI considers allowing AI porn

Garena is quietly developing new India-themed games even though Free Fire, its biggest title, has still not made a comeback to the country.

Garena is quietly making India-themed games even as Free Fire’s relaunch remains doubtful

The U.S.’ NHTSA has opened a fourth investigation into the Fisker Ocean SUV, spurred by multiple claims of “inadvertent Automatic Emergency Braking.”

Fisker Ocean faces fourth federal safety probe

CoreWeave has formally opened an office in London that will serve as its European headquarters and home to two new data centers.

CoreWeave, a $19B AI compute provider, opens European HQ in London with plans for 2 UK data centers

The Series C funding, which brings its total raise to around $95 million, will go toward mass production of the startup’s inaugural products

AI chip startup DEEPX secures $80M Series C at a $529M valuation 

A dust-up between Evolve Bank & Trust, Mercury and Synapse has led TabaPay to abandon its acquisition plans of troubled banking-as-a-service startup Synapse.

Infighting among fintech players has caused TabaPay to ‘pull out’ from buying bankrupt Synapse

The problem is not the media, but the message.

Apple’s ‘Crush’ ad is disgusting

The Twitter for Android client was “a demo app that Google had created and gave to us,” says Particle co-founder and ex-Twitter employee Sara Beykpour.

Google built some of the first social apps for Android, including Twitter and others

WhatsApp is updating its mobile apps for a fresh and more streamlined look, while also introducing a new “darker dark mode,” the company announced on Thursday. The messaging app says…

WhatsApp’s latest update streamlines navigation and adds a ‘darker dark mode’

Plinky lets you solve the problem of saving and organizing links from anywhere with a focus on simplicity and customization.

Plinky is an app for you to collect and organize links easily

The keynote kicks off at 10 a.m. PT on Tuesday and will offer glimpses into the latest versions of Android, Wear OS and Android TV.

Google I/O 2024: How to watch

For cancer patients, medicines administered in clinical trials can help save or extend lives. But despite thousands of trials in the United States each year, only 3% to 5% of…

Triomics raises $15M Series A to automate cancer clinical trials matching

Welcome back to TechCrunch Mobility — your central hub for news and insights on the future of transportation. Sign up here for free — just click TechCrunch Mobility! Tap, tap.…

Tesla drives Luminar lidar sales and Motional pauses robotaxi plans

The newly announced “Public Content Policy” will now join Reddit’s existing privacy policy and content policy to guide how Reddit’s data is being accessed and used by commercial entities and…

Reddit locks down its public data in new content policy, says use now requires a contract

Eva Ho plans to step away from her position as general partner at Fika Ventures, the Los Angeles-based seed firm she co-founded in 2016. Fika told LPs of Ho’s intention…

Fika Ventures co-founder Eva Ho will step back from the firm after its current fund is deployed

In a post on Werner Vogels’ personal blog, he details Distill, an open-source app he built to transcribe and summarize conference calls.

Amazon’s CTO built a meeting-summarizing app for some reason

Paris-based Mistral AI, a startup working on open source large language models — the building block for generative AI services — has been raising money at a $6 billion valuation,…

Sources: Mistral AI raising at a $6B valuation, SoftBank ‘not in’ but DST is

You can expect plenty of AI, but probably not a lot of hardware.

Google I/O 2024: What to expect